Topic 1 Question 155
A machine learning (ML) specialist is administering a production Amazon SageMaker endpoint with model monitoring configured. Amazon SageMaker Model Monitor detects violations on the SageMaker endpoint, so the ML specialist retrains the model with the latest dataset. This dataset is statistically representative of the current production traffic. The ML specialist notices that even after deploying the new SageMaker model and running the first monitoring job, the SageMaker endpoint still has violations. What should the ML specialist do to resolve the violations?
Manually trigger the monitoring job to re-evaluate the SageMaker endpoint traffic sample.
Run the Model Monitor baseline job again on the new training set. Configure Model Monitor to use the new baseline.
Delete the endpoint and recreate it with the original configuration.
Retrain the model again by using a combination of the original training set and the new training set.
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コメント(2)
- 👍 6edvardo2022/05/10
- 正解だと思う選択肢: B
Running the Model Monitor baseline job again with the new training set and configuring Model Monitor to use the new baseline is a valid option to resolve the violations.
By running the baseline job with the new training set, a new baseline is created, which can be used to compare with the new data to detect any drifts in the data distribution. Then, the updated baseline can be set as the new baseline for monitoring the endpoint.
So, option B is also a valid solution to resolve the violations.
👍 3AjoseO2023/02/17
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